Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

HiGen: Hierarchy-Aware Sequence Generation for Hierarchical Text Classification

About

Hierarchical text classification (HTC) is a complex subtask under multi-label text classification, characterized by a hierarchical label taxonomy and data imbalance. The best-performing models aim to learn a static representation by combining document and hierarchical label information. However, the relevance of document sections can vary based on the hierarchy level, necessitating a dynamic document representation. To address this, we propose HiGen, a text-generation-based framework utilizing language models to encode dynamic text representations. We introduce a level-guided loss function to capture the relationship between text and label name semantics. Our approach incorporates a task-specific pretraining strategy, adapting the language model to in-domain knowledge and significantly enhancing performance for classes with limited examples. Furthermore, we present a new and valuable dataset called ENZYME, designed for HTC, which comprises articles from PubMed with the goal of predicting Enzyme Commission (EC) numbers. Through extensive experiments on the ENZYME dataset and the widely recognized WOS and NYT datasets, our methodology demonstrates superior performance, surpassing existing approaches while efficiently handling data and mitigating class imbalance. The data and code will be released publicly.

Vidit Jain, Mukund Rungta, Yuchen Zhuang, Yue Yu, Zeyu Wang, Mu Gao, Jeffrey Skolnick, Chao Zhang• 2024

Related benchmarks

TaskDatasetResultRank
Hierarchical Text ClassificationWOS
Macro-F181.65
48
Hierarchical Text ClassificationRCV1 v2
Macro-F169.24
38
Hierarchical Text ClassificationAAPD
Macro-F163.09
33
Hierarchical Text ClassificationNYT
Macro F168.81
31
Relation ExtractionCodRED closed setting
Micro F135.55
15
Relation ExtractionCodRED open setting
Micro F113.46
15
Showing 6 of 6 rows

Other info

Follow for update